Latent Class Analysis Calculator

Identify hidden groups in categorical data using the EM algorithm.

Model Summary

Observations:8
Variables:3
Classes:2
Iterations:17

Model Fit Statistics

Log-Likelihood:-14.4589
AIC:42.9179
BIC:43.4740
Entropy R²:0.8420

Class Proportions

Class 166.5% (n=5)
Class 233.5% (n=3)

Item Response Probabilities

ItemClass 1Class 2
Item 175.1%0.1%
Item 275.1%0.1%
Item 380.0%27.7%

Posterior Probabilities (first 10)

ObsP(Class 1)P(Class 2)Assignment
11.0000.0001
21.0000.0001
30.9990.0011
40.9990.0011
50.0330.9672
60.2600.7402
71.0000.0001
80.0330.9672

Interpretation

Entropy R² of 0.842 indicates excellent classification quality. Item probabilities > 50% (highlighted) characterize each class.